Third Ward, Chunliu Maternity Hospital District of Dalian Women and Children Medical Center, Dalian, China.
Department of Obstetrics and Gynecology, The Second Affiliated Hospital of Dalian Medical University, Dalian, China.
J Gene Med. 2024 Jan;26(1):e3575. doi: 10.1002/jgm.3575. Epub 2023 Aug 7.
The present study was designed to screen key microRNA (miRNA)-target gene networks for ovarian cancer (OC) and to classify and construct a risk assessment system for OC based on the target genes.
OC sample data of The Cancer Genome Atlas dataset and GSE26193, GSE30161, GSE63885 and GSE9891 datasets were retrospectively collected. Pearson correlation analysis and targeted analysis of miRNA and target gene were performed to screen key miRNA-target gene networks. Target genes associated with the prognosis of OC were screened from key miRNA-target gene networks for consensus clustering and least absolute shrinkage and selection operator-based regression machine learning analysis of OC samples.
Twenty target genes of 2651 key miRNA-target gene pairs had significant prognostic correlation in each OC cohort, and OC was divided into three clusters. There were differences in prognostic outcome, biological pathways, immune cell abundance and susceptibility to immune checkpoint blockade (ICB) therapy and anti-tumor drugs among the three molecular clusters. S2 exhibited the least advantage in prognosis and immunotherapy response rate in the three molecular clusters, and the pathways regulating immunity, hypoxia, metabolism and promoting malignant progression of cancer, as well as infiltrating immune and stromal cell population abundance, were the highest in this cluster. An eight-target gene prognostic model was created, and the risk index obtained by using this model not only significantly distinguished the immune characteristics of the sample, but also predicted the response of the sample to ICB treatment, and helped to screen 36 potential anti-OC drugs.
The present study provides a classification strategy for OC based on prognostic target genes in key miRNA-target gene networks, and creates a risk assessment system for predicting prognosis and response to ICB therapy in OC patients, providing molecular basis for prognosis and precise treatment of OC.
本研究旨在筛选卵巢癌(OC)关键 miRNA(miRNA)-靶基因网络,并基于靶基因对 OC 进行分类和构建风险评估系统。
回顾性收集了癌症基因组图谱数据集和 GSE26193、GSE30161、GSE63885 和 GSE9891 数据集的 OC 样本数据。采用 Pearson 相关性分析和 miRNA 及靶基因靶向分析筛选关键 miRNA-靶基因网络,从关键 miRNA-靶基因网络中筛选与 OC 预后相关的靶基因,对 OC 样本进行共识聚类和最小绝对收缩和选择算子回归机器学习分析。
在每个 OC 队列中,2651 个关键 miRNA-靶基因对的 20 个靶基因的预后相关性均有统计学意义,OC 被分为 3 个亚群。在这三个分子亚群中,预后结果、生物学通路、免疫细胞丰度和对免疫检查点阻断(ICB)治疗和抗肿瘤药物的敏感性存在差异。S2 在三个分子亚群中预后和免疫治疗反应率最低,调节免疫、缺氧、代谢和促进癌症恶性进展的途径以及浸润免疫和基质细胞群体丰度最高。建立了一个 8 个靶基因预后模型,该模型获得的风险指数不仅能显著区分样本的免疫特征,而且能预测样本对 ICB 治疗的反应,有助于筛选 36 种潜在的抗 OC 药物。
本研究为基于关键 miRNA-靶基因网络中预后靶基因的 OC 提供了一种分类策略,并构建了预测 OC 患者预后和对 ICB 治疗反应的风险评估系统,为 OC 的预后和精准治疗提供了分子基础。